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The classification of motor imagery response: an accuracy enhancement through the ensemble of random subspace k-NN

机译:电动机图像响应的分类:通过随机子空间K-Nn的集合进行准确性增强

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Brain-computer interface (BCI) is a viable alternative communication strategy for patients of neurological disorders as it facilitates the translation of human intent into device commands. The performance of BCIs primarily depends on the efficacy of the feature extraction and feature selection techniques, as well as the classification algorithms employed. More often than not, high dimensional feature set contains redundant features that may degrade a given classifier’s performance. In the present investigation, an ensemble learning-based classification algorithm, namely random subspace k-nearest neighbour (k-NN) has been proposed to classify the motor imagery (MI) data. The common spatial pattern (CSP) has been applied to extract the features from the MI response, and the effectiveness of random forest (RF)-based feature selection algorithm has also been investigated. In order to evaluate the efficacy of the proposed method, an experimental study has been implemented using four publicly available MI dataset (BCI Competition III dataset 1 (data-1), dataset IIIA (data-2), dataset IVA (data-3) and BCI Competition IV dataset II (data-4)). It was shown that the ensemble-based random subspace k-NN approach achieved the superior classification accuracy (CA) of 99.21%, 93.19%, 93.57% and 90.32% for data-1, data-2, data-3 and data-4, respectively against other models evaluated, namely linear discriminant analysis, support vector machine, random forest, Na?ve Bayes and the conventional k-NN. In comparison with other classification approaches reported in the recent studies, the proposed method enhanced the accuracy by 2.09% for data-1, 1.29% for data-2, 4.95% for data-3 and 5.71% for data-4, respectively. Moreover, it is worth highlighting that the RF feature selection technique employed in the present study was able to significantly reduce the feature dimension without compromising the overall CA. The outcome from the present study implies that the proposed method may significantly enhance the accuracy of MI data classification.
机译:脑电脑界面(BCI)是神经系统疾病患者的可行替代通信策略,因为它促进了人意向翻译成装置命令。 BCI的性能主要取决于特征提取和特征选择技术的功效,以及所用的分类算法。更常见的是,高维功能集包含可能降级给定分类器性能的冗余功能。在本研究中,已经提出了一种基于集合的基于学习的分类算法,即随机子空间k最近邻(K-Nn)来分类电机图像(MI)数据。已经施加了公共空间模式(CSP)以提取来自MI响应的特征,并且还研究了随机林(RF)特征选择算法的有效性。为了评估所提出的方法的功效,使用四个公开的MI数据集实现了实验研究(BCI竞赛III数据集1(Data-1),DataSet IIIA(Data-2),数据集IVA(Data-3)和BCI竞赛IV数据集II(DATA-4))。结果表明,基于集合的随机子空间K-NN方法实现了99.21%,93.19%,93.19%,93.57%和90.32%的卓越分类精度(CA),数据-1,Data-2,Data-3和Data-4分别对其他型号进行评估,即线性判别分析,支持向量机,随机森林,Naα贝雷斯和传统的K-Nn。与最近的研究中报道的其他分类方法相比,所提出的方法分别提高了数据-1,1.29%的DATA-2,4.95%的数据-3和数据4的5.71%的准确性。此外,值得突出显示本研究中采用的RF特征选择技术能够显着减少特征尺寸而不损害整体CA。本研究的结果意味着所提出的方法可以显着提高MI数据分类的准确性。

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